The system of chemotaxis PDEs with singular sensitivity was originally proposed by Short et al. [Math. Mod. Meth. Appl. Sci., 18:1249-1267, 2008] as the continuum limit of a biased random walk model to account for the formation of crime hotspots and environmental feedback successfully. Recently, this idea has also been applied to epidemiology to model the impact of human social behaviors on disease transmission. In order to characterize the phase transition, pattern formation and statistical properties in the long-term dynamics, a stable and accurate numerical scheme is urgently demanded, which still remains challenging due to the positivity constraint on the singular sensitivity and the absence of an energy functional. To address these numerical challenges, this paper constructs an efficient positivity-preserving, implicit-explicit scheme with second-order accuracy. A rigorous error estimation is provided with the Lagrange multiplier correction to deal with the singular sensitivity. The whole framework is extended to a multi-agent epidemic model with degenerate diffusion, in which both positivity and mass conservation are achieved. Typical numerical examples are conducted to validate our theoretical results and to demonstrate the necessity of correction strategy. The proposed scheme allows us to study the nucleation, spread, and dissipation of crime hotspots, as well as validate that clustering of population density may accelerate virus transmission in epidemic dynamics and potentially aggravate the second infectious wave.
翻译:具有奇异敏感性的趋化偏微分方程系统最初由Short等人[Math. Mod. Meth. Appl. Sci., 18:1249-1267, 2008]提出,作为有偏随机游走模型的连续极限,成功解释了犯罪热点形成与环境反馈机制。近年来,该思想亦被应用于流行病学领域,以模拟人类社会行为对疾病传播的影响。为刻画长期动力学中的相变、模式形成及统计特性,亟需构建稳定精确的数值格式,但由于奇异敏感性的正性约束及能量泛函的缺失,该问题仍具挑战性。针对这些数值挑战,本文构建了一种高效、保正性、具有二阶精度的隐式-显式格式。通过引入拉格朗日乘子修正处理奇异敏感性,提供了严格的误差估计。整个框架被推广至具有退化扩散的多智能体流行病模型,同时实现了正性保持与质量守恒。典型数值算例验证了理论结果的正确性,并证明了修正策略的必要性。所提格式使我们能够研究犯罪热点的成核、扩散与消散过程,同时验证了在流行病动力学中人口密度聚集可能加速病毒传播,并可能加剧第二波感染高峰。